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Training Faster by Separating Modes of Variation in Batch-normalized Models

Machine Learning 2018-11-16 v2 Computer Vision and Pattern Recognition Machine Learning

Abstract

Batch Normalization (BN) is essential to effectively train state-of-the-art deep Convolutional Neural Networks (CNN). It normalizes inputs to the layers during training using the statistics of each mini-batch. In this work, we study BN from the viewpoint of Fisher kernels. We show that assuming samples within a mini-batch are from the same probability density function, then BN is identical to the Fisher vector of a Gaussian distribution. That means BN can be explained in terms of kernels that naturally emerge from the probability density function of the underlying data distribution. However, given the rectifying non-linearities employed in CNN architectures, distribution of inputs to the layers show heavy tail and asymmetric characteristics. Therefore, we propose approximating underlying data distribution not with one, but a mixture of Gaussian densities. Deriving Fisher vector for a Gaussian Mixture Model (GMM), reveals that BN can be improved by independently normalizing with respect to the statistics of disentangled sub-populations. We refer to our proposed soft piecewise version of BN as Mixture Normalization (MN). Through extensive set of experiments on CIFAR-10 and CIFAR-100, we show that MN not only effectively accelerates training image classification and Generative Adversarial networks, but also reaches higher quality models.

Keywords

Cite

@article{arxiv.1806.02892,
  title  = {Training Faster by Separating Modes of Variation in Batch-normalized Models},
  author = {Mahdi M. Kalayeh and Mubarak Shah},
  journal= {arXiv preprint arXiv:1806.02892},
  year   = {2018}
}
R2 v1 2026-06-23T02:22:59.810Z